Fiber laying process parameter model construction method and system based on imitation learning

A technology of fiber placement process and process parameters, which is applied in general control systems, control/adjustment systems, instruments, etc., can solve the problems of poor parameter promotion and generalization capabilities, and low control accuracy of process parameters, so as to achieve automatic fiber placement The effect of quality, improved intelligence, and enhanced generalization ability

Active Publication Date: 2021-01-05
WUHAN UNIV
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Problems solved by technology

[0005] Aiming at the problems that the acquisition of the current fiber placement process parameters depends on a large number of experiments, and the obtained parameters have poor generalization ability and the control accuracy of the process parameters of the robotic fiber automatic placement system is not high, the present invention proposes a fiber placement method based on imitation learning. The construction method and system of the laying process pa

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  • Fiber laying process parameter model construction method and system based on imitation learning
  • Fiber laying process parameter model construction method and system based on imitation learning
  • Fiber laying process parameter model construction method and system based on imitation learning

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Embodiment Construction

[0045] The present invention will be further described below in conjunction with accompanying drawing.

[0046] figure 1 It is a diagram of the system structure involved in the present invention, mainly including: the platform base 1 is used as the installation base of the whole system laying system, the cooperative robot arm 2 and the mold rotating table 8 are installed and fixed on the platform base 1; the curved surface The mold 9 is installed on the mold rotary table 8; the sensing modules such as the tension sensor 5, the rotary encoder 6, and the thermal imager 7 are installed on the designed fiber placement head 4 device; the fiber placement head 4, six-dimensional force / torque The sensor 3 and the cooperative robot arm 2 are installed in sequence to form an automatic fiber laying device;

[0047] figure 2 It is a block diagram of the system composition involved in the present invention, including a main body and a control unit for controlling the main body; the cont...

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Abstract

The invention discloses a fiber laying process parameter model construction method and system based on imitation learning. The system comprises a manual laying demonstration module and the like, and is characterized in that a demonstrator holds a small fiber laying device to carry out the fiber laying operation on the surface of a die, an action capturing module records the real-time position of alaying point on the die, a video recording module records the operation process in real time, a process parameter sensing module records the fiber laying process parameters in real time, the data istransmitted to an industrial personal computer for data storage and processing, the learning process of manual laying teaching operation is completed by simulating a learning algorithm module, a probability mapping model of the process parameter-surface curvature is output, According to the automatic fiber laying system based on the cooperative mechanical arm, the learned model result is combinedwith an intelligent control algorithm, and automatic laying work of fibers on a curved surface is achieved. According to the invention, the control precision of the laying path and process parametersin the composite material laying process is improved, so that the laying defects are reduced.

Description

technical field [0001] The invention provides a method and system for constructing a fiber laying process parameter model based on imitation learning, and relates to the fields of advanced composite material manufacturing, artificial intelligence and robot technology. Background technique [0002] Fiber-reinforced composite materials refer to composite materials composed of high-strength fibers and matrix materials. Because of their advantages such as high specific strength, fatigue resistance, corrosion resistance, and strong designability, they are widely used in aerospace, marine, automotive, sports, medical and other fields. There are a wide range of application requirements. [0003] Automatic placement of composite materials is one of the widely used high-performance and low-cost forming methods. According to different prepregs and processing methods, it is mainly divided into automatic fiber tape placement and automatic fiber filament placement. In the process of aut...

Claims

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Application Information

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IPC IPC(8): G05B13/04
CPCG05B13/042
Inventor 肖晓晖何思宇杨尚尚段宝阁王镇陆伟
Owner WUHAN UNIV
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